Data Analyst - Principal Consultant (Insurance)

Transform Together Consulting
London
2 days ago
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Company Description

Transform Together Consulting empowers individuals and organizations to reach their fullest potential through a modern-day approach to digital transformation. With a team of experienced professionals, the company focuses on delivering value and return on investment to its customers. By emphasizing speed and efficiency, Transform Together Consulting has built a reputation for helping clients achieve better outcomes in their digital transformation projects, specialising in data and AI. Located in the London Area, their mission centers on driving innovation and success for clients in the Financial Services industry.


Role Description

This is a full-time hybrid role for a Data Analyst - Principal Consultant based in the London Area, United Kingdom. Some work-from-home flexibility is available. In this role, you will be responsible for performing the following:

  • Advanced data analysis and modelling (Python and advanced SQL)
  • Developing relational, logical and physical data models
  • Perform hands-on data analysis, including data profiling and validations, data quality assessment and traceability analysis.
  • Utilising the strength of AI to support and interpret structured and unstructured data
  • Interpreting statistical findings to provide actionable business insights.
  • Requirements gathering with technical and non technical stakeholders for new data initiatives
  • Working with all types of engineers across the digital transformation landscape
  • Collaborating with cross-functional teams to communicate and contribute to impactful transformation initiatives.
  • Comfortable working with complex datasets and enterprise-scale data environments
  • Experience in databricks and snowflake is advantageous
  • BPA (Bulk Purchase Annuities) knowledge is advantageous but not essential.


This role required with an immediate start due to the urgency of delivery needs, however candidates with longer notice period will also be considered.


Qualifications

  • Strong Analytical Skills and expertise in Data Analytics
  • Proficiency in Statistics and Data Modeling (Relational, Dimensional)
  • Excellent Communication skills to effectively convey insights and strategies
  • Experience with data visualization tools and business intelligence platforms is a plus
  • Bachelor's degree in a related field (e.g., Data Science, Mathematics, Business Analytics) is preferred
  • Ability to work independently and collaboratively in a hybrid work environment


Benefits and Perks

  • Highly Competitive Salary that rewards high performers
  • Shareholding in Transform Together
  • Training opportunities and incentives, improving yourself through experience and knowledge is one of Transform Togethers top priorities.
  • Industry leading health and wellbeing plan
  • Life Assurance (4 x annual salary)
  • 25 days annual leave plus bank holidays
  • Competitive pension scheme
  • Hybrid working - we believe in work life balance
  • An industry-leading referral scheme with no limits on the number of referrals
  • Flexible holiday buy/sell option
  • Mentoring scheme
  • A variety of social events
  • Multiple office locations to enable easy travel to office infrastructure across the UK


Industry

Business Consulting and Services


Employment Type

Full-time

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